In the near future, the communication between autonomous cars will produce a network of sensors that will allow us to know the state of the roads in real time. Lidar technology, upon which most autonomous cars are based, allows the acquisition of 3D geometric information of the environment. The objective of this work is to use point clouds acquired by Mobile Laser Scanning (MLS) to segment the main elements of road environment (road surface, ditches, guardrails, fences, embankments, and borders) through the use of PointNet. Previously, the point cloud was automatically divided into sections in order for semantic segmentation to be scalable to different case studies, regardless of their shape or length. An overall accuracy of 92.5% has been ...
Semantic segmentation using machine learning and computer vision techniques is one of the most popul...
The purpose of roads is to carry vehicles. Human drivers can easily distinguish roads and their comp...
Having access to accurate and recent digital twins of infrastructure assets benefits the renovation,...
Roads in modern cities facilitate different types of users, including car drivers, cyclists, and ped...
Generating of a highly precise map grows up with development of autonomous driving vehicles. The hig...
Semantic segmentation of mobile LiDAR point clouds is an essential task in many fields such as road ...
Urban roads, as one of the essential transportation infrastructures, provide considerable motivation...
Abstract—This paper presents a novel method for automated extraction of road markings directly from ...
In this paper, we introduce a deep encoder-decoder network, named SalsaNet, for efficient semantic s...
Functional classification of the road is important to the construction of sustainable transport syst...
3D road mapping is essential for intelligent transportation system in smart cities. Road features ca...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
Autonomous vehicles perceive objects through various sensors. Cameras, radar, and LiDAR are generall...
The United Nations (UN) stated that all new roads and 75% of travel time on roads must be 3+ star st...
Mobile mapping systems are becoming a popular method for collecting high quality near 3D information...
Semantic segmentation using machine learning and computer vision techniques is one of the most popul...
The purpose of roads is to carry vehicles. Human drivers can easily distinguish roads and their comp...
Having access to accurate and recent digital twins of infrastructure assets benefits the renovation,...
Roads in modern cities facilitate different types of users, including car drivers, cyclists, and ped...
Generating of a highly precise map grows up with development of autonomous driving vehicles. The hig...
Semantic segmentation of mobile LiDAR point clouds is an essential task in many fields such as road ...
Urban roads, as one of the essential transportation infrastructures, provide considerable motivation...
Abstract—This paper presents a novel method for automated extraction of road markings directly from ...
In this paper, we introduce a deep encoder-decoder network, named SalsaNet, for efficient semantic s...
Functional classification of the road is important to the construction of sustainable transport syst...
3D road mapping is essential for intelligent transportation system in smart cities. Road features ca...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
Autonomous vehicles perceive objects through various sensors. Cameras, radar, and LiDAR are generall...
The United Nations (UN) stated that all new roads and 75% of travel time on roads must be 3+ star st...
Mobile mapping systems are becoming a popular method for collecting high quality near 3D information...
Semantic segmentation using machine learning and computer vision techniques is one of the most popul...
The purpose of roads is to carry vehicles. Human drivers can easily distinguish roads and their comp...
Having access to accurate and recent digital twins of infrastructure assets benefits the renovation,...